Thank you Marek!
Posts by Emil Marklund
Thank you Carolyn!
Thank you!
Celebrating with Julia Schaepe, William Greenleaf, and all other authors!
@stockholm-uni.bsky.social, @scilifelab.se, @vetenskapsradet.bsky.social, @strategiska.bsky.social
(6/6)
π§¬We do not need to invoke highly cooperative biological state changes, such as phase separation or condensation, to describe πͺπ― π·πͺπ·π° transcription factor binding in our observed contexts. In sum, we can understand chromatin states πͺπ― π·πͺπ·π° with βclassicalβ and interpretable biochemistry. (5/6)
𧬠A thermodynamic model with πͺπ― π·πͺπ΅π³π°-derived affinities predicts πͺπ― π·πͺπ·π° chromatin states in human cells across KLF motif grammars. Our models predict chromatin states with few physical and interpretable free parameters, in contrast to highly parameterized βblack boxβ deep learning models. (4/6)
𧬠Motif flanking bases that KLF1 does not make direct contacts with in the crystal structure drive ~40-fold affinity variation. Distal flanking sequences helical turns away (β₯10.5 bp) from the core motif tune affinity ~2-fold, in a manner consistent with sequence-dependent search of the motif (3/6)
𧬠Differences in DNA binding affinity are driven by differences in motif recognition. This is the same binding mechanism that we previously found for the bacterial TF lπ’π€ repressor, which is structurally dissimilar to KLF1, implying a universal mechanism across domains of life and TF types. (2/6)
π£ I hereby make my Bluesky debut to announce that our work linking DNA binding affinities and kinetics πͺπ― π·πͺπ΅π³π° and πͺπ― π·πͺπ·π° for the human transcription factor KLF1 just got published in Cell! @cp-cell.bsky.social
www.cell.com/cell/fulltex...
Key findings in a thread (1/6):